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Machine Learning for Predicting Discharge Disposition After Traumatic Brain Injury.

Publication ,  Journal Article
Satyadev, N; Warman, PI; Seas, A; Kolls, BJ; Haglund, MM; Fuller, AT; Dunn, TW
Published in: Neurosurgery
June 1, 2022

BACKGROUND: Current traumatic brain injury (TBI) prognostic calculators are commonly used to predict the mortality and Glasgow Outcome Scale, but these outcomes are most relevant for severe TBI. Because mild and moderate TBI rarely reaches severe outcomes, there is a need for novel prognostic endpoints. OBJECTIVE: To generate machine learning (ML) models with a strong predictive capacity for trichotomized discharge disposition, an outcome not previously used in TBI prognostic models. The outcome can serve as a proxy for patients' functional status, even in mild and moderate patients with TBI. METHODS: Using a large data set (n = 5292) of patients with TBI from a quaternary care center and 84 predictors, including vitals, demographics, mechanism of injury, initial Glasgow Coma Scale, and comorbidities, we trained 6 different ML algorithms using a nested-stratified-cross-validation protocol. After optimizing hyperparameters and performing model selection, isotonic regression was applied to calibrate models. RESULTS: When maximizing the microaveraged area under the receiver operating characteristic curve during hyperparameter optimization, a random forest model exhibited top performance. A random forest model was also selected when maximizing the microaveraged area under the precision-recall curve. For both models, the weighted average area under the receiver operating characteristic curves was 0.84 (95% CI 0.81-0.87) and the weighted average area under the precision-recall curves was 0.85 (95% CI 0.82-0.88). CONCLUSION: Our group presents high-performing ML models to predict trichotomized discharge disposition. These models can assist in optimization of patient triage and treatment, especially in cases of mild and moderate TBI.

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Published In

Neurosurgery

DOI

EISSN

1524-4040

Publication Date

June 1, 2022

Volume

90

Issue

6

Start / End Page

768 / 774

Location

United States

Related Subject Headings

  • Prognosis
  • Patient Discharge
  • Neurology & Neurosurgery
  • Machine Learning
  • Humans
  • Glasgow Outcome Scale
  • Glasgow Coma Scale
  • Brain Injuries, Traumatic
  • 5202 Biological psychology
  • 3209 Neurosciences
 

Citation

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Satyadev, N., Warman, P. I., Seas, A., Kolls, B. J., Haglund, M. M., Fuller, A. T., & Dunn, T. W. (2022). Machine Learning for Predicting Discharge Disposition After Traumatic Brain Injury. Neurosurgery, 90(6), 768–774. https://doi.org/10.1227/neu.0000000000001911
Satyadev, Nihal, Pranav I. Warman, Andreas Seas, Brad J. Kolls, Michael M. Haglund, Anthony T. Fuller, and Timothy W. Dunn. “Machine Learning for Predicting Discharge Disposition After Traumatic Brain Injury.Neurosurgery 90, no. 6 (June 1, 2022): 768–74. https://doi.org/10.1227/neu.0000000000001911.
Satyadev N, Warman PI, Seas A, Kolls BJ, Haglund MM, Fuller AT, et al. Machine Learning for Predicting Discharge Disposition After Traumatic Brain Injury. Neurosurgery. 2022 Jun 1;90(6):768–74.
Satyadev, Nihal, et al. “Machine Learning for Predicting Discharge Disposition After Traumatic Brain Injury.Neurosurgery, vol. 90, no. 6, June 2022, pp. 768–74. Pubmed, doi:10.1227/neu.0000000000001911.
Satyadev N, Warman PI, Seas A, Kolls BJ, Haglund MM, Fuller AT, Dunn TW. Machine Learning for Predicting Discharge Disposition After Traumatic Brain Injury. Neurosurgery. 2022 Jun 1;90(6):768–774.
Journal cover image

Published In

Neurosurgery

DOI

EISSN

1524-4040

Publication Date

June 1, 2022

Volume

90

Issue

6

Start / End Page

768 / 774

Location

United States

Related Subject Headings

  • Prognosis
  • Patient Discharge
  • Neurology & Neurosurgery
  • Machine Learning
  • Humans
  • Glasgow Outcome Scale
  • Glasgow Coma Scale
  • Brain Injuries, Traumatic
  • 5202 Biological psychology
  • 3209 Neurosciences